基于深度学习的交通分析系统的局部鲁棒性认证

Kai Wang, Zhiliang Wang, Dongqi Han, Wenqi Chen, Jiahai Yang, Xingang Shi, Xia Yin
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引用次数: 0

摘要

-深度学习(DL)在许多流量分析任务中表现良好。然而,深度学习的脆弱性削弱了这些流量分析器在现实世界中的性能(例如,遭受逃避攻击)。近年来,许多研究都集中在基于dl的模型的鲁棒性认证上。但是现有的方法在流量分析领域的表现还远远不够完美。在本文中,我们试图同时匹配基于dl的流量分析系统的三个属性:(1)高度异构的特征,(2)不同的模型设计,(3)对抗性的操作环境。因此,我们提出了基于边界自适应随机平滑的基于dl的流量分析系统的通用鲁棒性认证框架BARS。为了获得更严格的鲁棒性保证,BARS使用了在分类边界上收敛的优化平滑噪声。首先提出了配电变压器产生最优平滑噪声的方法。为了优化平滑噪声,我们提出了一些特殊的分布函数和两种基于梯度的噪声形状和噪声尺度搜索算法。我们在三个实际的基于dl的流量分析系统中实现和评估了BARS。实验结果表明,与基线方法相比,BARS方法具有更强的鲁棒性保证。此外,我们通过五个应用案例(例如,定量评估鲁棒性)说明了BARS的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BARS: Local Robustness Certification for Deep Learning based Traffic Analysis Systems
—Deep learning (DL) performs well in many traffic analysis tasks. Nevertheless, the vulnerability of deep learning weakens the real-world performance of these traffic analyzers (e.g., suffering from evasion attack). Many studies in recent years focused on robustness certification for DL-based models. But existing methods perform far from perfectly in the traffic analysis domain. In this paper, we try to match three attributes of DL-based traffic analysis systems at the same time: (1) highly heterogeneous features, (2) varied model designs, (3) adversarial operating environments. Therefore, we propose BARS , a general robustness certification framework for DL-based traffic analysis systems based on boundary-adaptive randomized smoothing. To obtain tighter robustness guarantee, BARS uses optimized smoothing noise converging on the classification boundary. We firstly propose the Distribution Transformer for generating optimized smoothing noise. Then to optimize the smoothing noise, we propose some special distribution functions and two gradient based searching algorithms for noise shape and noise scale . We implement and evaluate BARS in three practical DL-based traffic analysis systems. Experiment results show that BARS can achieve tighter robustness guarantee than baseline methods. Furthermore, we illustrate the practicability of BARS through five application cases (e.g., quantitatively evaluating robustness).
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